Data processing: artificial intelligence – Machine learning
Reexamination Certificate
2007-05-16
2010-06-22
Sparks, Donald (Department: 2129)
Data processing: artificial intelligence
Machine learning
Reexamination Certificate
active
07743003
ABSTRACT:
A system may track statistics for a number of features using an approximate counting technique by: subjecting each feature to multiple, different hash functions to generate multiple, different hash values, where each of the hash values may identify a particular location in a memory, and storing statistics for each feature at the particular locations identified by the hash values. The system may generate rules for a model based on the tracked statistics.
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Shazeer Noam
Tong Simon
Chang Li-Wu
Google Inc.
Harrity & Harrity LLP
Sparks Donald
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